In this paper, a novel single image super-resolution (SISR) algorithm is proposed. It is based on the BM3D (Block-Matching and 3D filtering) paradigm, where both sparsity and nonlocal patch self-similarity priors are utilized. The algorithm is derived from a variational formulation of the problem and has a structure typical for iterative back-projection super-resolution methods. They are characterized by updating high-resolution image which is calculated using the previous estimate and upsampled low-resolution error. The developed method is thoroughly compared with the state-of-the-art SISR both for noiseless and noisy data, demonstrating superior performance objectively and subjectively.
Yi TangYuan YuanPingkun YanXuelong Li
Xiaoqiang LuHaoliang YuanPingkun YanYuan YuanXuelong Li
Awais AhmedKun SheRaheel Ahmed MemonJunaid AhmedGetnet Tefera